Mi Zhiwen, Zhang Xudong, Su Jinya, Han Dejun, Su Baofeng
College of Mechanical and Electronic Engineering, Northwest A&F University, Yangling, China.
Key Laboratory of Agricultural Internet of Things, Ministry of Agriculture and Rural Affairs, Yangling, China.
Front Plant Sci. 2020 Sep 9;11:558126. doi: 10.3389/fpls.2020.558126. eCollection 2020.
Wheat stripe rust is one of the main wheat diseases worldwide, which has significantly adverse effects on wheat yield and quality, posing serious threats on food security. Disease severity grading plays a paramount role in stripe rust disease management including breeding disease-resistant wheat varieties. Manual inspection is time-consuming, labor-intensive and prone to human errors, therefore, there is a clearly urgent need to develop more effective and efficient disease grading strategy by using automated approaches. However, the differences between wheat leaves of different levels of stripe rust infection are usually tiny and subtle, and, as a result, ordinary deep learning networks fail to achieve satisfying performance. By formulating this challenge as a fine-grained image classification problem, this study proposes a novel deep learning network C-DenseNet which embeds Convolutional Block Attention Module (CBAM) in the densely connected convolutional network (DenseNet). The performance of C-DenseNet and its variants is demonstrated a newly collected wheat stripe rust grading dataset (WSRgrading dataset) at Northwest A&F University, Shaanxi Province, China, which contains a total of 5,242 wheat leaf images with 6 levels of stripe rust infection. The dataset was collected by using various mobile devices in the natural field condition. Comparative experiments show that C-DenseNet with a test accuracy of 97.99% outperforms the classical DenseNet (92.53%) and ResNet (73.43%). GradCAM++ network visualization also shows that C-DenseNet is able to pay more attention to the key areas in making the decision. It is concluded that C-DenseNet with an attention mechanism is suitable for wheat stripe rust disease grading in field conditions.
小麦条锈病是全球主要的小麦病害之一,对小麦产量和品质有显著不利影响,对粮食安全构成严重威胁。病情严重程度分级在条锈病管理(包括培育抗病小麦品种)中起着至关重要的作用。人工检查耗时、费力且容易出现人为误差,因此,迫切需要通过使用自动化方法来制定更有效、高效的病害分级策略。然而,不同条锈病感染程度的小麦叶片之间的差异通常微小且细微,因此,普通的深度学习网络无法取得令人满意的性能。通过将这一挑战表述为细粒度图像分类问题,本研究提出了一种新颖的深度学习网络C-DenseNet,它将卷积块注意力模块(CBAM)嵌入到密集连接卷积网络(DenseNet)中。在中国陕西省西北农林科技大学新收集的小麦条锈病分级数据集(WSRgrading数据集)上展示了C-DenseNet及其变体的性能,该数据集共包含5242张具有6种条锈病感染程度的小麦叶片图像。该数据集是在自然田间条件下使用各种移动设备收集的。对比实验表明,测试准确率为97.99%的C-DenseNet优于经典的DenseNet(92.53%)和ResNet(73.43%)。GradCAM++网络可视化还表明,C-DenseNet在做出决策时能够更加关注关键区域。得出结论,具有注意力机制的C-DenseNet适用于田间条件下的小麦条锈病分级。